Specular Flow and the Recovery of Surface Structure

S. Roth, Michael J. Black
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引用次数: 95

Abstract

In scenes containing specular objects, the image motion observed by a moving camera may be an intermixed combination of optical flow resulting from diffuse reflectance (diffuse flow) and specular reflection (specular flow). Here, with few assumptions, we formalize the notion of specular flow, show how it relates to the 3D structure of the world, and develop an algorithm for estimating scene structure from 2D image motion. Unlike previous work on isolated specular highlights we use two image frames and estimate the semi-dense flow arising from the specular reflections of textured scenes. We parametrically model the image motion of a quadratic surface patch viewed from a moving camera. The flow is modeled as a probabilistic mixture of diffuse and specular components and the 3D shape is recovered using an Expectation-Maximization algorithm. Rather than treating specular reflections as noise to be removed or ignored, we show that the specular flow provides additional constraints on scene geometry that improve estimation of 3D structure when compared with reconstruction from diffuse flow alone. We demonstrate this for a set of synthetic and real sequences of mixed specular-diffuse objects.
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镜面流和表面结构的恢复
在包含高光物体的场景中,移动摄像机观察到的图像运动可能是由漫反射(漫反射)和高光反射(高光流)产生的光流的混合组合。在这里,通过一些假设,我们形式化了镜面流的概念,展示了它与世界的3D结构的关系,并开发了一种从2D图像运动中估计场景结构的算法。不像以前的工作在孤立的高光,我们使用两个图像帧和估计由纹理场景的高光反射产生的半密集流。我们对从运动相机中观察到的二次曲面斑块的像运动进行了参数化建模。该流被建模为漫射和镜面成分的概率混合,并使用期望最大化算法恢复三维形状。我们没有将镜面反射视为需要去除或忽略的噪声,而是表明,与仅通过漫射流进行重建相比,镜面流为场景几何提供了额外的约束,从而提高了对3D结构的估计。我们为一组合成和真实的混合镜面漫射物体序列证明了这一点。
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